Autonomous Mobile Mapping Robots 2023
DOI: 10.5772/intechopen.108132
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Unconventional Trajectories for Mobile 3D Scanning and Mapping

Abstract: State-of-the-art LiDAR-based 3D scanning and mapping systems focus on scenarios where good sensing coverage is ensured, such as drones, wheeled robots, cars, or backpack-mounted systems. However, in some scenarios more unconventional sensor trajectories come naturally, e.g., rolling, descending, or oscillating back and forth, but the literature on these is relatively sparse. As a result, most implementations developed in the past are not able to solve the SLAM problem in such conditions. In this chapter, we pr… Show more

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“…al. [35], the Savgol filter removes the effect of the outliers but preserves the signal tendency. We use the basic Savgol filter with a window of 5 and a polynomial degree of 2 from the python SciPy library [36], which is a Python library used for scientific computing and technical computing.…”
Section: The Effect Of Approach Distance On Detection Scoresmentioning
confidence: 99%
“…al. [35], the Savgol filter removes the effect of the outliers but preserves the signal tendency. We use the basic Savgol filter with a window of 5 and a polynomial degree of 2 from the python SciPy library [36], which is a Python library used for scientific computing and technical computing.…”
Section: The Effect Of Approach Distance On Detection Scoresmentioning
confidence: 99%